Abstract

During the last years, the demand for indoor models has increased for various purposes. As a provisional step to proceed towards higher dimensional indoor models, powerful and flexible floor plans can be utilised. Therefore, several methods have been proposed that provide automatically generated floor plans from laser point clouds. The prevailing methodology seeks to attain semantic enhancement of a model (e.g. the identification and labelling of its components) built upon already reconstructed (a priori) geometry. In contrast, this paper demonstrates preliminary research on the possibility to directly incorporate semantic knowledge, which is itself derived from the raw data during the extraction, into the geometric modelling process. In this regard, we propose a new method to automatically extract floor plans from raw point clouds. It is based on a hierarchical space partitioning of the data, integrated with primitive selection actuated by object detection. First, planar primitives corresponding to vertical architectural structures are extracted using M-estimator SAmple and Consensus (MSAC). The set of the resulting line segments are refined by a selection process through a novel door detection algorithm, considering optimization of prior information and fitness to the data. The selected lines are used as hyperlines to partition the space into enclosed areas. Finally, a floor plan is extracted from these partitions by Minimum Description Length (MDL) hypothesis ranking. The algorithm is applied on a real mobile laser scanner dataset and the results are evaluated both in terms of door detection and consecutive floor plan extraction.

Highlights

  • Indoor modelling is a recently trending topic it has been studied for the last three decades

  • In the final part, decomposition is implemented by over-splitting the space using BSP, driven by the refined primitives obtained in the previous step, and by optimizing in terms of MDL (Minimum Description Length) formulation

  • We investigate the connectivity of the line segments, and define two different ending types according to the proximity to the neighbouring endings as: a) Anchor and b) Open

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Summary

Introduction

Indoor modelling is a recently trending topic it has been studied for the last three decades. With the advent of mobile laser scanners, the possibilities as well as the challenges grow hand in hand. In this context, floor plans can be regarded as a provisional step to proceed towards higher dimensional indoor models. Not all buildings satisfy this requirement, both in terms of preservation of the blueprints, and faithful construction or renovation of the architectural design. In this regard, the automatic reconstruction of floor plans from laser point clouds can have valuable contribution to generate efficient inventories

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